Journal of Water and Climate Change (Nov 2022)

Comparison of multi-objective genetic algorithms for optimization of cascade reservoir systems

  • Manlin Wang,
  • Yu Zhang,
  • Yan Lu,
  • Xinyu Wan,
  • Bin Xu,
  • Lei Yu

DOI
https://doi.org/10.2166/wcc.2022.290
Journal volume & issue
Vol. 13, no. 11
pp. 4069 – 4086

Abstract

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Multi-objective genetic algorithms (MOGAs) are widely used for multi-reservoir systems’ optimization due to their high efficiency and fast convergence. However, the computational cost grows exponentially with the expansion of multi-reservoir systems and the increased dimensions of optimization problems, posing a great challenge to multi-reservoir operations. Therefore, it is important to find a suitable and efficient multi-objective algorithm for multi-reservoir system optimization. In this study, three representative MOGAs were selected, namely the Non-dominated Sorting Genetic Algorithm II (NSGA-II), Non-Dominated Sorting Genetic Algorithm III (NSGA-III), and Reference Vector Guided Evolutionary Algorithm (RVEA), and three multi-objective optimization models were then developed accordingly. Numerical experiments were conducted to evaluate the performance of these three algorithms for the optimization of a cascaded reservoir system. The results show that for the two-objective model, the non-dominant size generation rate (NDSGR) of NSGA-II is 1.66 and 4.01 times that of NSGA-III and RVEA, respectively. NSGA-II is more suitable for solving the optimization operation problem with two objectives. Based on the comprehensive evaluation, NSGA-III seems to be more appropriate for more than two objectives. These results emphasize the importance of using appropriate algorithms and provide further insights into the choice of algorithms for the optimization of hydropower systems. HIGHLIGHTS Development of MOGAs was reviewed.; Three representative MOGAs were selected, namely NSGA-II, NSGA-III, and RVEA, and three multi-objective optimization models were then developed accordingly for comparison.; Numerical experiments were conducted to evaluate the performance of representative MOGAs for optimization of a cascaded reservoir system.;

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